SFB 1294
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    • Research Area A Theory and Algorithms
      • A01 Statistics for stochastic partial differential equations
      • A02 Long-time stability and accuracy of ensemble transform filter algorithms
      • A03 Sequential and adaptive learning under dependence and non-standard objective functions
      • A04 Nonlinear statistical inverse problems with random observations
      • A05 Combining non parametric statistical and probabilistic approaches for inference on cloud-of-points data
      • A06 Approximative Bayesian inference and model selection for stochastic differential equations (SDEs)
      • A07 Model order reduction for Bayesian inference
    • Research Area B Algorithms and Applications
      • B02 Inferring the dynamics underlying protrusion-driven cell motility
      • B03 Parameter inference and model comparison in dynamical cognitive models
      • B04 Parametric and nonparametric modeling of spatiotemporal change patterns in seismicity using Hawkes processes
      • B05 Attention selection and recognition in scene-viewing
      • B06 Novel methods for the 3D reconstruction of the dynamic evolution of the Van Allen belts using multiple satellite measurements
      • B07 Inferring active particle dynamics by data assimilation
      • B08 Continuous learning by integrating reinforcement learning and data assimilation to individualise drug treatments
      • B09 Neural network modelling of brain responses during language comprehension
    • Research Area Z Common Activities
      • Z03 Information Infrastructure for data assimilation
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  1. Data assimilation - the collaborative research centre SFB1294
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Seminars in 2019

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14Jan2019

Deterministic Sequential Monte Carlo for non-Gaussian elliptic problems

Sangeetika Ruchi, Centrum Wiskunde & Informatica, Amsterdam, The Netherlands 2.09.0.1315:15 - 16:45

Sequential Monte Carlo methods (SMC) are typically stochastic. Ensemble Transform Particle filter (ETPF) is a deterministic SMC method. It, however,…

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18Jan2019

Uniform estimates for particle filters

Pierre del Moral, INRIA, Bordeaux Research Center, University of Bordeaux, France 2.09.0.1410:15-11:45

This talk is concerned with the long time behavior of particle filters and Ensemble Kalman filters. These filters can be interpreted as mean field…

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21Jan2019

Nash Equilibria for Stochastic Games with Singular Control.

Jodi Dianetti, Universität Bielefeld 2.9.2.2210:15-11:45

A singular stochastic control problem typically describes the situation in which
an agent has to choose optimally an irreversible strategy in order to…

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29Mar2019

Asymptotic equivalence for diffusion processes and the corresponding Euler scheme

Ester Mariucci, Universität Potsdam, SFB 1294, Germany 2.9.0.1410:15 - 11:15

When looking for asymptotic results for some statistical model, global asymptotic equivalence, in the Le Cam sense, often proves to be a useful…

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09Apr2019

Assimilating data with outer probability measures

Jeremie Houssineau, University of Warwick, UK 2.9.2.2213:00 - 14:00

Although using probability distributions to model uncertainty is by far the most widely accepted approach, it does not come without inconveniences. A…

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26Apr2019

Kabinettwatch: Wer wird was im Bundeskabinett?

Julia Fleischer, Universität Potsdam 2.09.0.1210:15 - 11:15

Talk by Julia Fleischer and Markus Seyfried

Das Projekt Kabinettwatch beschäftigt sich mit der Vorhersage der Zusammensetzung des Bundeskabinetts…

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29Apr2019

An extension of Dobrushin's uniqueness criterion and applications to Gibbs point processes

Tanja Pasurek, Universität Bielefeld, Germany 2.09.0.1312:00

We extend the classical Dobrushin's uniqueness criterion to Markov random fields on general graphs and with single-spin spaces that need not be…

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03May2019

Downscaling Data Assimilation Algorithm for Dissipative Evolution Models Employing Coarse Mesh Observables

Edriss Titi, Texas A&M University, USA 2.09.0.1210:15 - 11:15

One of the main characteristics of infinite-dimensional dissipative evolution equations, such as the Navier-Stokes equations and reaction-diffusion…

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27May2019

Non–linear functionals preserving normal distribution and their asymptotic normality

Linda Khachatryan, Institute of Mathematics of the National Academy of Science of RA, Yerevan, Armenia 2.09.0.1312:00

We introduce sufficiently wide classes of non-linear functionals preserving normal (Gaussian) distribution and establish various conditions under…

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21Jun2019

Probabilistic Linear Solvers

Jon Cockayne, University of Warwick, UK 2.14.0.2110:15 - 11:15

A fundamental task in numerical computation is the solution of large linear systems, and iterative methods are among the most widely used solvers for…

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13Aug2019

Kalman-Wasserstein Gradient Flows

Franca Hoffmann, California Institute of Technology, USA 2.09.0.12/1310:15 - 11:15

We study a class of interacting particle systems that may be used for optimization. By considering the mean-field limit one obtains a nonlinear…

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19Aug2019

Fully Hyperbolic Convolutional Neural Networks

Eldad Haber, The University of British Colombia, Canada 2.28.0.10810:15-11:15

Convolutional Neural Networks (CNN) have recently seen tremendous success in various computer vision tasks. However, their application to problems…

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22Aug2019

Applied Data Assimilation: diabetes phenotyping/forecasting + hybrid machine learning approaches

Matthew Levine, California Institute of Technology, USA 2.09.0.1210:15 - 11:15

Methods from data assimilation, inverse problems, and machine learning have shown exciting potential for transforming biomedicine.

First, I will show…

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26Aug2019

What is the Lagrangian for Nonlinear Filtering?

Prashant Mehta, University of Illinois, USA 2.28.0.10210:15 - 11:15

There is a certain magic involved in recasting the equations in Physics, and the algorithms in Engineering, in variational terms.  The most classical…

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05Sep2019

Stellar Astrophysics: the power of simultaneous high resolution stellar spectroscopy, polarimetry and velocimetry. - Rotation, activity and stellar magnetic fields in the A0 standard star Vega

Torsten Böhm, Université de Toulouse 2.9.0.1211:00 - 12:00

Neo-Narval at TBL/Pic du Midi (France) will be the first instrument working simultaneously in high resolution spectroscopy, polarimetry and…

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13Sep2019

Ensemble Data Assimilation for Coupled Models of the Earth System

Lars Nerger, Alfred-Wegener-Institute, Helmholtz Centre for Polar and Marine Science, Bremerhaven, Germany 2.9.0.1210:15- 11:15

Coupled models simulate different compartments of the Earth system as well as their interactions. For example coupled ocean-biogoechemical models…

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21Oct2019

Data assimilation for the stochastic one-layer rotating shallow water system driven by transport noise

Oana Lang, Imperial College London, UK 2.14.0.0910:15 -11:15

In this talk we will present a data assimilation problem based on a new stochastic rotating shallow
water (SRSW) signal and an adaptive tempering…

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08Nov2019

Regret analysis of the Piyavskii-Shubert algorithm

Sébastien Gerchinovitz, IRT Saint-Exupéry, Toulouse, France 2.12.0.01 (large Lecture hall)10:15 - 11:15

We consider the problem of maximizing a non-concave Lipschitz function f over a bounded domain in dimension d. In this talk we provide regret…

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10Dec2019

Using data assimilation, systems physiology, and healthcare data to forecast physiology in an intensive care unit: why it is important, what is possible, what is hard, and the state of the art

David Albers, University of Colorado, USA 2.9.2.2215:00 - 16:00

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11Dec2019

Bayesian Inference Made Easy via Auxiliary Augmentations

Theo Galy-Fajou, Technische Universität Berlin 2.14.0.26/2712:30 - 14:00

Bayesian Inference is almost always a very challenging mathematical and computational problem. In the context of Gaussian Process, only a Gaussian…

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Institute of Mathematics

SFB 1294 – Data Assimilation
Institute of Mathematics
Karl-Liebknecht-Str. 24-25
14476 Potsdam - OT Golm

SFB1294[at]uni-potsdam.de
+49 331 977 203137

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